College of Electronics and Information Engineering, Tongji University, Shanghai, China.
School of Computer Science, South China Normal University, Guangzhou, China.
PLoS One. 2019 Feb 13;14(2):e0212137. doi: 10.1371/journal.pone.0212137. eCollection 2019.
In general, the stock prices of the same industry have a similar trend, but those of different industries do not. When investing in stocks of different industries, one should select the optimal model from lots of trading models for each industry because any model may not be suitable for capturing the stock trends of all industries. However, the study has not been carried out at present. In this paper, firstly we select 424 S&P 500 index component stocks (SPICS) and 185 CSI 300 index component stocks (CSICS) as the research objects from 2010 to 2017, divide them into 9 industries such as finance and energy respectively. Secondly, we apply 12 widely used machine learning algorithms to generate stock trading signals in different industries and execute the back-testing based on the trading signals. Thirdly, we use a non-parametric statistical test to evaluate whether there are significant differences among the trading performance evaluation indicators (PEI) of different models in the same industry. Finally, we propose a series of rules to select the optimal models for stock investment of every industry. The analytical results on SPICS and CSICS show that we can find the optimal trading models for each industry based on the statistical tests and the rules. Most importantly, the PEI of the best algorithms can be significantly better than that of the benchmark index and "Buy and Hold" strategy. Therefore, the algorithms can be used for making profits from industry stock trading.
总体而言,同一行业的股票价格走势相似,但不同行业的股票价格走势则不同。在投资不同行业的股票时,应针对每个行业从众多交易模型中选择最优模型,因为任何模型都可能不适合捕捉所有行业的股票趋势。然而,目前尚未开展相关研究。在本文中,我们首先从 2010 年到 2017 年选择了 424 只 S&P 500 指数成分股(SPICS)和 185 只 CSI 300 指数成分股(CSICS)作为研究对象,将它们分为金融和能源等 9 个行业。其次,我们应用 12 种广泛使用的机器学习算法在不同行业生成股票交易信号,并基于这些交易信号进行回测。然后,我们使用非参数统计检验来评估同一行业不同模型的交易绩效评估指标(PEI)之间是否存在显著差异。最后,我们提出了一系列规则来为每个行业的股票投资选择最优模型。对 SPICS 和 CSICS 的分析结果表明,我们可以根据统计检验和规则为每个行业找到最优的交易模型。最重要的是,最佳算法的 PEI 可以显著优于基准指数和“买入并持有”策略。因此,这些算法可用于从行业股票交易中获利。